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基于神经网络逆系统的无轴承异步电机非线性内模控制
引用本文:王正齐,刘贤兴.基于神经网络逆系统的无轴承异步电机非线性内模控制[J].自动化学报,2013,39(4):433-439.
作者姓名:王正齐  刘贤兴
作者单位:1.南京工程学院电力工程学院 南京 211167 2.江苏大学电气信息工程学院 镇江 212013
摘    要:针对无轴承异步电机非线性、多变量、强耦合的特点,提出一种基于神经网络 α阶逆系统方法的非线性内模控制策略.将用动态神经网络逼近的无轴承异步电机 α阶逆模型与原系统复合,将非线性的无轴承异步电机原系统解耦成转子径向位移、转 速和转子磁链四个独立的伪线性子系统.为了保证 系统的鲁棒性,对伪线性系统引入内模控制,仿真和实验研究验证了所提控制方法的有效性.

关 键 词:无轴承异步电机    神经网络  α阶逆系统方法    内模控制    解耦
收稿时间:2011-04-06

Nonlinear Internal Model Control for Bearingless Induction Motor Based on Neural Network Inversion
WANG Zheng-Qi,LIU Xian-Xing.Nonlinear Internal Model Control for Bearingless Induction Motor Based on Neural Network Inversion[J].Acta Automatica Sinica,2013,39(4):433-439.
Authors:WANG Zheng-Qi  LIU Xian-Xing
Affiliation:1.School of Electric Power Engineering, Nanjing Institute of Technology, Nanjing 211167;
Abstract:The bearingless induction motor is a nonlinear, multi-variable and strongly coupled system. For this system, a novel internal model control strategy based on neural network αth-order inverse system theory is proposed in this paper to realize the decoupling control. By cascading the αth-order inverse model approximated by the dynamic neural network with the original system, the nonlinear bearingless induction motor system is decoupled into four independent pseudo-linear subsystems, that is, two radial displacement subsystems, a speed subsystem and a rotor flux subsystem. Then, the internal model control method is introduced to the four pseudo-linear subsystems to ensure the robustness and anti-jamming ability of the closed-loop system. The effectiveness and superiority of the proposed strategy are demonstrated by simulation and experiment.
Keywords:Bearingless induction motor  neural network αth-order inverse system theory  internal model control  decoupling
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